# Copyright 2015 The TensorFlow Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# ==============================================================================
"""Keras convolution layers and image transformation layers.
"""

from __future__ import absolute_import
from __future__ import division
from __future__ import print_function

from tensorflow.python.eager import context
from tensorflow.python.framework import tensor_shape
from tensorflow.python.keras._impl.keras import activations
from tensorflow.python.keras._impl.keras import backend
from tensorflow.python.keras._impl.keras import constraints
from tensorflow.python.keras._impl.keras import initializers
from tensorflow.python.keras._impl.keras import regularizers
from tensorflow.python.keras._impl.keras.engine import InputSpec
from tensorflow.python.keras._impl.keras.engine import Layer
# imports for backwards namespace compatibility
# pylint: disable=unused-import
from tensorflow.python.keras._impl.keras.layers.pooling import AveragePooling1D
from tensorflow.python.keras._impl.keras.layers.pooling import AveragePooling2D
from tensorflow.python.keras._impl.keras.layers.pooling import AveragePooling3D
from tensorflow.python.keras._impl.keras.layers.pooling import MaxPooling1D
from tensorflow.python.keras._impl.keras.layers.pooling import MaxPooling2D
from tensorflow.python.keras._impl.keras.layers.pooling import MaxPooling3D
# pylint: enable=unused-import
from tensorflow.python.keras._impl.keras.utils import conv_utils
from tensorflow.python.keras._impl.keras.utils import tf_utils
from tensorflow.python.ops import array_ops
from tensorflow.python.ops import nn
from tensorflow.python.ops import nn_ops
from tensorflow.python.util.tf_export import tf_export


class Conv(Layer):
  """Abstract nD convolution layer (private, used as implementation base).

  This layer creates a convolution kernel that is convolved
  (actually cross-correlated) with the layer input to produce a tensor of
  outputs. If `use_bias` is True (and a `bias_initializer` is provided),
  a bias vector is created and added to the outputs. Finally, if
  `activation` is not `None`, it is applied to the outputs as well.

  Arguments:
    rank: An integer, the rank of the convolution, e.g. "2" for 2D convolution.
    filters: Integer, the dimensionality of the output space (i.e. the number
      of filters in the convolution).
    kernel_size: An integer or tuple/list of n integers, specifying the
      length of the convolution window.
    strides: An integer or tuple/list of n integers,
      specifying the stride length of the convolution.
      Specifying any stride value != 1 is incompatible with specifying
      any `dilation_rate` value != 1.
    padding: One of `"valid"` or `"same"` (case-insensitive).
    data_format: A string, one of `channels_last` (default) or `channels_first`.
      The ordering of the dimensions in the inputs.
      `channels_last` corresponds to inputs with shape
      `(batch, ..., channels)` while `channels_first` corresponds to
      inputs with shape `(batch, channels, ...)`.
    dilation_rate: An integer or tuple/list of n integers, specifying
      the dilation rate to use for dilated convolution.
      Currently, specifying any `dilation_rate` value != 1 is
      incompatible with specifying any `strides` value != 1.
    activation: Activation function. Set it to None to maintain a
      linear activation.
    use_bias: Boolean, whether the layer uses a bias.
    kernel_initializer: An initializer for the convolution kernel.
    bias_initializer: An initializer for the bias vector. If None, the default
      initializer will be used.
    kernel_regularizer: Optional regularizer for the convolution kernel.
    bias_regularizer: Optional regularizer for the bias vector.
    activity_regularizer: Optional regularizer function for the output.
    kernel_constraint: Optional projection function to be applied to the
        kernel after being updated by an `Optimizer` (e.g. used to implement
        norm constraints or value constraints for layer weights). The function
        must take as input the unprojected variable and must return the
        projected variable (which must have the same shape). Constraints are
        not safe to use when doing asynchronous distributed training.
    bias_constraint: Optional projection function to be applied to the
        bias after being updated by an `Optimizer`.
    trainable: Boolean, if `True` also add variables to the graph collection
      `GraphKeys.TRAINABLE_VARIABLES` (see `tf.Variable`).
    name: A string, the name of the layer.
  """

  def __init__(self, rank,
               filters,
               kernel_size,
               strides=1,
               padding='valid',
               data_format=None,
               dilation_rate=1,
               activation=None,
               use_bias=True,
               kernel_initializer='glorot_uniform',
               bias_initializer='zeros',
               kernel_regularizer=None,
               bias_regularizer=None,
               activity_regularizer=None,
               kernel_constraint=None,
               bias_constraint=None,
               trainable=True,
               name=None,
               **kwargs):
    super(Conv, self).__init__(
        trainable=trainable,
        name=name,
        activity_regularizer=regularizers.get(activity_regularizer),
        **kwargs)
    self.rank = rank
    self.filters = filters
    self.kernel_size = conv_utils.normalize_tuple(
        kernel_size, rank, 'kernel_size')
    self.strides = conv_utils.normalize_tuple(strides, rank, 'strides')
    self.padding = conv_utils.normalize_padding(padding)
    self.data_format = conv_utils.normalize_data_format(data_format)
    self.dilation_rate = conv_utils.normalize_tuple(
        dilation_rate, rank, 'dilation_rate')
    self.activation = activations.get(activation)
    self.use_bias = use_bias
    self.kernel_initializer = initializers.get(kernel_initializer)
    self.bias_initializer = initializers.get(bias_initializer)
    self.kernel_regularizer = regularizers.get(kernel_regularizer)
    self.bias_regularizer = regularizers.get(bias_regularizer)
    self.kernel_constraint = constraints.get(kernel_constraint)
    self.bias_constraint = constraints.get(bias_constraint)
    self.input_spec = InputSpec(ndim=self.rank + 2)

  def build(self, input_shape):
    input_shape = tensor_shape.TensorShape(input_shape)
    if self.data_format == 'channels_first':
      channel_axis = 1
    else:
      channel_axis = -1
    if input_shape[channel_axis].value is None:
      raise ValueError('The channel dimension of the inputs '
                       'should be defined. Found `None`.')
    input_dim = int(input_shape[channel_axis])
    kernel_shape = self.kernel_size + (input_dim, self.filters)

    self.kernel = self.add_variable(name='kernel',
                                    shape=kernel_shape,
                                    initializer=self.kernel_initializer,
                                    regularizer=self.kernel_regularizer,
                                    constraint=self.kernel_constraint,
                                    trainable=True,
                                    dtype=self.dtype)
    if self.use_bias:
      self.bias = self.add_variable(name='bias',
                                    shape=(self.filters,),
                                    initializer=self.bias_initializer,
                                    regularizer=self.bias_regularizer,
                                    constraint=self.bias_constraint,
                                    trainable=True,
                                    dtype=self.dtype)
    else:
      self.bias = None
    self.input_spec = InputSpec(ndim=self.rank + 2,
                                axes={channel_axis: input_dim})
    self._convolution_op = nn_ops.Convolution(
        input_shape,
        filter_shape=self.kernel.get_shape(),
        dilation_rate=self.dilation_rate,
        strides=self.strides,
        padding=self.padding.upper(),
        data_format=conv_utils.convert_data_format(self.data_format,
                                                   self.rank + 2))
    self.built = True

  def call(self, inputs):
    outputs = self._convolution_op(inputs, self.kernel)

    if self.use_bias:
      if self.data_format == 'channels_first':
        if self.rank == 1:
          # nn.bias_add does not accept a 1D input tensor.
          bias = array_ops.reshape(self.bias, (1, self.filters, 1))
          outputs += bias
        if self.rank == 2:
          outputs = nn.bias_add(outputs, self.bias, data_format='NCHW')
        if self.rank == 3:
          # As of Mar 2017, direct addition is significantly slower than
          # bias_add when computing gradients. To use bias_add, we collapse Z
          # and Y into a single dimension to obtain a 4D input tensor.
          outputs_shape = outputs.shape.as_list()
          if outputs_shape[0] is None:
            outputs_shape[0] = -1
          outputs_4d = array_ops.reshape(outputs,
                                         [outputs_shape[0], outputs_shape[1],
                                          outputs_shape[2] * outputs_shape[3],
                                          outputs_shape[4]])
          outputs_4d = nn.bias_add(outputs_4d, self.bias, data_format='NCHW')
          outputs = array_ops.reshape(outputs_4d, outputs_shape)
      else:
        outputs = nn.bias_add(outputs, self.bias, data_format='NHWC')

    if self.activation is not None:
      return self.activation(outputs)
    return outputs

  def compute_output_shape(self, input_shape):
    input_shape = tensor_shape.TensorShape(input_shape).as_list()
    if self.data_format == 'channels_last':
      space = input_shape[1:-1]
      new_space = []
      for i in range(len(space)):
        new_dim = conv_utils.conv_output_length(
            space[i],
            self.kernel_size[i],
            padding=self.padding,
            stride=self.strides[i],
            dilation=self.dilation_rate[i])
        new_space.append(new_dim)
      return tensor_shape.TensorShape([input_shape[0]] + new_space +
                                      [self.filters])
    else:
      space = input_shape[2:]
      new_space = []
      for i in range(len(space)):
        new_dim = conv_utils.conv_output_length(
            space[i],
            self.kernel_size[i],
            padding=self.padding,
            stride=self.strides[i],
            dilation=self.dilation_rate[i])
        new_space.append(new_dim)
      return tensor_shape.TensorShape([input_shape[0], self.filters] +
                                      new_space)

  def get_config(self):
    config = {
        'filters': self.filters,
        'kernel_size': self.kernel_size,
        'strides': self.strides,
        'padding': self.padding,
        'data_format': self.data_format,
        'dilation_rate': self.dilation_rate,
        'activation': activations.serialize(self.activation),
        'use_bias': self.use_bias,
        'kernel_initializer': initializers.serialize(self.kernel_initializer),
        'bias_initializer': initializers.serialize(self.bias_initializer),
        'kernel_regularizer': regularizers.serialize(self.kernel_regularizer),
        'bias_regularizer': regularizers.serialize(self.bias_regularizer),
        'activity_regularizer':
            regularizers.serialize(self.activity_regularizer),
        'kernel_constraint': constraints.serialize(self.kernel_constraint),
        'bias_constraint': constraints.serialize(self.bias_constraint)
    }
    base_config = super(Conv, self).get_config()
    return dict(list(base_config.items()) + list(config.items()))


@tf_export('keras.layers.Conv1D', 'keras.layers.Convolution1D')
class Conv1D(Conv):
  """1D convolution layer (e.g. temporal convolution).

  This layer creates a convolution kernel that is convolved
  with the layer input over a single spatial (or temporal) dimension
  to produce a tensor of outputs.
  If `use_bias` is True, a bias vector is created and added to the outputs.
  Finally, if `activation` is not `None`,
  it is applied to the outputs as well.

  When using this layer as the first layer in a model,
  provide an `input_shape` argument
  (tuple of integers or `None`, e.g.
  `(10, 128)` for sequences of 10 vectors of 128-dimensional vectors,
  or `(None, 128)` for variable-length sequences of 128-dimensional vectors.

  Arguments:
      filters: Integer, the dimensionality of the output space
          (i.e. the number of output filters in the convolution).
      kernel_size: An integer or tuple/list of a single integer,
          specifying the length of the 1D convolution window.
      strides: An integer or tuple/list of a single integer,
          specifying the stride length of the convolution.
          Specifying any stride value != 1 is incompatible with specifying
          any `dilation_rate` value != 1.
      padding: One of `"valid"`, `"causal"` or `"same"` (case-insensitive).
          `"causal"` results in causal (dilated) convolutions, e.g. output[t]
          does not depend on input[t+1:]. Useful when modeling temporal data
          where the model should not violate the temporal order.
          See [WaveNet: A Generative Model for Raw Audio, section
            2.1](https://arxiv.org/abs/1609.03499).
      data_format: A string,
          one of `channels_last` (default) or `channels_first`.
      dilation_rate: an integer or tuple/list of a single integer, specifying
          the dilation rate to use for dilated convolution.
          Currently, specifying any `dilation_rate` value != 1 is
          incompatible with specifying any `strides` value != 1.
      activation: Activation function to use.
          If you don't specify anything, no activation is applied
          (ie. "linear" activation: `a(x) = x`).
      use_bias: Boolean, whether the layer uses a bias vector.
      kernel_initializer: Initializer for the `kernel` weights matrix.
      bias_initializer: Initializer for the bias vector.
      kernel_regularizer: Regularizer function applied to
          the `kernel` weights matrix.
      bias_regularizer: Regularizer function applied to the bias vector.
      activity_regularizer: Regularizer function applied to
          the output of the layer (its "activation")..
      kernel_constraint: Constraint function applied to the kernel matrix.
      bias_constraint: Constraint function applied to the bias vector.

  Input shape:
      3D tensor with shape: `(batch_size, steps, input_dim)`

  Output shape:
      3D tensor with shape: `(batch_size, new_steps, filters)`
      `steps` value might have changed due to padding or strides.
  """

  def __init__(self,
               filters,
               kernel_size,
               strides=1,
               padding='valid',
               data_format='channels_last',
               dilation_rate=1,
               activation=None,
               use_bias=True,
               kernel_initializer='glorot_uniform',
               bias_initializer='zeros',
               kernel_regularizer=None,
               bias_regularizer=None,
               activity_regularizer=None,
               kernel_constraint=None,
               bias_constraint=None,
               **kwargs):
    super(Conv1D, self).__init__(
        rank=1,
        filters=filters,
        kernel_size=kernel_size,
        strides=strides,
        padding=padding,
        data_format=data_format,
        dilation_rate=dilation_rate,
        activation=activations.get(activation),
        use_bias=use_bias,
        kernel_initializer=initializers.get(kernel_initializer),
        bias_initializer=initializers.get(bias_initializer),
        kernel_regularizer=regularizers.get(kernel_regularizer),
        bias_regularizer=regularizers.get(bias_regularizer),
        activity_regularizer=regularizers.get(activity_regularizer),
        kernel_constraint=constraints.get(kernel_constraint),
        bias_constraint=constraints.get(bias_constraint),
        **kwargs)


@tf_export('keras.layers.Conv2D', 'keras.layers.Convolution2D')
class Conv2D(Conv):
  """2D convolution layer (e.g. spatial convolution over images).

  This layer creates a convolution kernel that is convolved
  with the layer input to produce a tensor of
  outputs. If `use_bias` is True,
  a bias vector is created and added to the outputs. Finally, if
  `activation` is not `None`, it is applied to the outputs as well.

  When using this layer as the first layer in a model,
  provide the keyword argument `input_shape`
  (tuple of integers, does not include the sample axis),
  e.g. `input_shape=(128, 128, 3)` for 128x128 RGB pictures
  in `data_format="channels_last"`.

  Arguments:
      filters: Integer, the dimensionality of the output space
          (i.e. the number of output filters in the convolution).
      kernel_size: An integer or tuple/list of 2 integers, specifying the
          width and height of the 2D convolution window.
          Can be a single integer to specify the same value for
          all spatial dimensions.
      strides: An integer or tuple/list of 2 integers,
          specifying the strides of the convolution along the width and height.
          Can be a single integer to specify the same value for
          all spatial dimensions.
          Specifying any stride value != 1 is incompatible with specifying
          any `dilation_rate` value != 1.
      padding: one of `"valid"` or `"same"` (case-insensitive).
      data_format: A string,
          one of `channels_last` (default) or `channels_first`.
          The ordering of the dimensions in the inputs.
          `channels_last` corresponds to inputs with shape
          `(batch, height, width, channels)` while `channels_first`
          corresponds to inputs with shape
          `(batch, channels, height, width)`.
          It defaults to the `image_data_format` value found in your
          Keras config file at `~/.keras/keras.json`.
          If you never set it, then it will be "channels_last".
      dilation_rate: an integer or tuple/list of 2 integers, specifying
          the dilation rate to use for dilated convolution.
          Can be a single integer to specify the same value for
          all spatial dimensions.
          Currently, specifying any `dilation_rate` value != 1 is
          incompatible with specifying any stride value != 1.
      activation: Activation function to use.
          If you don't specify anything, no activation is applied
          (ie. "linear" activation: `a(x) = x`).
      use_bias: Boolean, whether the layer uses a bias vector.
      kernel_initializer: Initializer for the `kernel` weights matrix.
      bias_initializer: Initializer for the bias vector.
      kernel_regularizer: Regularizer function applied to
          the `kernel` weights matrix.
      bias_regularizer: Regularizer function applied to the bias vector.
      activity_regularizer: Regularizer function applied to
          the output of the layer (its "activation")..
      kernel_constraint: Constraint function applied to the kernel matrix.
      bias_constraint: Constraint function applied to the bias vector.

  Input shape:
      4D tensor with shape:
      `(samples, channels, rows, cols)` if data_format='channels_first'
      or 4D tensor with shape:
      `(samples, rows, cols, channels)` if data_format='channels_last'.

  Output shape:
      4D tensor with shape:
      `(samples, filters, new_rows, new_cols)` if data_format='channels_first'
      or 4D tensor with shape:
      `(samples, new_rows, new_cols, filters)` if data_format='channels_last'.
      `rows` and `cols` values might have changed due to padding.
  """

  def __init__(self,
               filters,
               kernel_size,
               strides=(1, 1),
               padding='valid',
               data_format=None,
               dilation_rate=(1, 1),
               activation=None,
               use_bias=True,
               kernel_initializer='glorot_uniform',
               bias_initializer='zeros',
               kernel_regularizer=None,
               bias_regularizer=None,
               activity_regularizer=None,
               kernel_constraint=None,
               bias_constraint=None,
               **kwargs):
    super(Conv2D, self).__init__(
        rank=2,
        filters=filters,
        kernel_size=kernel_size,
        strides=strides,
        padding=padding,
        data_format=data_format,
        dilation_rate=dilation_rate,
        activation=activations.get(activation),
        use_bias=use_bias,
        kernel_initializer=initializers.get(kernel_initializer),
        bias_initializer=initializers.get(bias_initializer),
        kernel_regularizer=regularizers.get(kernel_regularizer),
        bias_regularizer=regularizers.get(bias_regularizer),
        activity_regularizer=regularizers.get(activity_regularizer),
        kernel_constraint=constraints.get(kernel_constraint),
        bias_constraint=constraints.get(bias_constraint),
        **kwargs)


@tf_export('keras.layers.Conv3D', 'keras.layers.Convolution3D')
class Conv3D(Conv):
  """3D convolution layer (e.g. spatial convolution over volumes).

  This layer creates a convolution kernel that is convolved
  with the layer input to produce a tensor of
  outputs. If `use_bias` is True,
  a bias vector is created and added to the outputs. Finally, if
  `activation` is not `None`, it is applied to the outputs as well.

  When using this layer as the first layer in a model,
  provide the keyword argument `input_shape`
  (tuple of integers, does not include the sample axis),
  e.g. `input_shape=(128, 128, 128, 1)` for 128x128x128 volumes
  with a single channel,
  in `data_format="channels_last"`.

  Arguments:
      filters: Integer, the dimensionality of the output space
          (i.e. the number of output filters in the convolution).
      kernel_size: An integer or tuple/list of 3 integers, specifying the
          depth, height and width of the 3D convolution window.
          Can be a single integer to specify the same value for
          all spatial dimensions.
      strides: An integer or tuple/list of 3 integers,
          specifying the strides of the convolution along each spatial
            dimension.
          Can be a single integer to specify the same value for
          all spatial dimensions.
          Specifying any stride value != 1 is incompatible with specifying
          any `dilation_rate` value != 1.
      padding: one of `"valid"` or `"same"` (case-insensitive).
      data_format: A string,
          one of `channels_last` (default) or `channels_first`.
          The ordering of the dimensions in the inputs.
          `channels_last` corresponds to inputs with shape
          `(batch, spatial_dim1, spatial_dim2, spatial_dim3, channels)`
          while `channels_first` corresponds to inputs with shape
          `(batch, channels, spatial_dim1, spatial_dim2, spatial_dim3)`.
          It defaults to the `image_data_format` value found in your
          Keras config file at `~/.keras/keras.json`.
          If you never set it, then it will be "channels_last".
      dilation_rate: an integer or tuple/list of 3 integers, specifying
          the dilation rate to use for dilated convolution.
          Can be a single integer to specify the same value for
          all spatial dimensions.
          Currently, specifying any `dilation_rate` value != 1 is
          incompatible with specifying any stride value != 1.
      activation: Activation function to use.
          If you don't specify anything, no activation is applied
          (ie. "linear" activation: `a(x) = x`).
      use_bias: Boolean, whether the layer uses a bias vector.
      kernel_initializer: Initializer for the `kernel` weights matrix.
      bias_initializer: Initializer for the bias vector.
      kernel_regularizer: Regularizer function applied to
          the `kernel` weights matrix.
      bias_regularizer: Regularizer function applied to the bias vector.
      activity_regularizer: Regularizer function applied to
          the output of the layer (its "activation")..
      kernel_constraint: Constraint function applied to the kernel matrix.
      bias_constraint: Constraint function applied to the bias vector.

  Input shape:
      5D tensor with shape:
      `(samples, channels, conv_dim1, conv_dim2, conv_dim3)` if
        data_format='channels_first'
      or 5D tensor with shape:
      `(samples, conv_dim1, conv_dim2, conv_dim3, channels)` if
        data_format='channels_last'.

  Output shape:
      5D tensor with shape:
      `(samples, filters, new_conv_dim1, new_conv_dim2, new_conv_dim3)` if
        data_format='channels_first'
      or 5D tensor with shape:
      `(samples, new_conv_dim1, new_conv_dim2, new_conv_dim3, filters)` if
        data_format='channels_last'.
      `new_conv_dim1`, `new_conv_dim2` and `new_conv_dim3` values might have
        changed due to padding.
  """

  def __init__(self,
               filters,
               kernel_size,
               strides=(1, 1, 1),
               padding='valid',
               data_format=None,
               dilation_rate=(1, 1, 1),
               activation=None,
               use_bias=True,
               kernel_initializer='glorot_uniform',
               bias_initializer='zeros',
               kernel_regularizer=None,
               bias_regularizer=None,
               activity_regularizer=None,
               kernel_constraint=None,
               bias_constraint=None,
               **kwargs):
    super(Conv3D, self).__init__(
        rank=3,
        filters=filters,
        kernel_size=kernel_size,
        strides=strides,
        padding=padding,
        data_format=data_format,
        dilation_rate=dilation_rate,
        activation=activations.get(activation),
        use_bias=use_bias,
        kernel_initializer=initializers.get(kernel_initializer),
        bias_initializer=initializers.get(bias_initializer),
        kernel_regularizer=regularizers.get(kernel_regularizer),
        bias_regularizer=regularizers.get(bias_regularizer),
        activity_regularizer=regularizers.get(activity_regularizer),
        kernel_constraint=constraints.get(kernel_constraint),
        bias_constraint=constraints.get(bias_constraint),
        **kwargs)


@tf_export('keras.layers.Conv2DTranspose',
           'keras.layers.Convolution2DTranspose')
class Conv2DTranspose(Conv2D):
  """Transposed convolution layer (sometimes called Deconvolution).

  The need for transposed convolutions generally arises
  from the desire to use a transformation going in the opposite direction
  of a normal convolution, i.e., from something that has the shape of the
  output of some convolution to something that has the shape of its input
  while maintaining a connectivity pattern that is compatible with
  said convolution.

  When using this layer as the first layer in a model,
  provide the keyword argument `input_shape`
  (tuple of integers, does not include the sample axis),
  e.g. `input_shape=(128, 128, 3)` for 128x128 RGB pictures
  in `data_format="channels_last"`.

  Arguments:
      filters: Integer, the dimensionality of the output space
          (i.e. the number of output filters in the convolution).
      kernel_size: An integer or tuple/list of 2 integers, specifying the
          width and height of the 2D convolution window.
          Can be a single integer to specify the same value for
          all spatial dimensions.
      strides: An integer or tuple/list of 2 integers,
          specifying the strides of the convolution along the width and height.
          Can be a single integer to specify the same value for
          all spatial dimensions.
          Specifying any stride value != 1 is incompatible with specifying
          any `dilation_rate` value != 1.
      padding: one of `"valid"` or `"same"` (case-insensitive).
      data_format: A string,
          one of `channels_last` (default) or `channels_first`.
          The ordering of the dimensions in the inputs.
          `channels_last` corresponds to inputs with shape
          `(batch, height, width, channels)` while `channels_first`
          corresponds to inputs with shape
          `(batch, channels, height, width)`.
          It defaults to the `image_data_format` value found in your
          Keras config file at `~/.keras/keras.json`.
          If you never set it, then it will be "channels_last".
      dilation_rate: an integer or tuple/list of 2 integers, specifying
          the dilation rate to use for dilated convolution.
          Can be a single integer to specify the same value for
          all spatial dimensions.
          Currently, specifying any `dilation_rate` value != 1 is
          incompatible with specifying any stride value != 1.
      activation: Activation function to use.
          If you don't specify anything, no activation is applied
          (ie. "linear" activation: `a(x) = x`).
      use_bias: Boolean, whether the layer uses a bias vector.
      kernel_initializer: Initializer for the `kernel` weights matrix.
      bias_initializer: Initializer for the bias vector.
      kernel_regularizer: Regularizer function applied to
          the `kernel` weights matrix.
      bias_regularizer: Regularizer function applied to the bias vector.
      activity_regularizer: Regularizer function applied to
          the output of the layer (its "activation")..
      kernel_constraint: Constraint function applied to the kernel matrix.
      bias_constraint: Constraint function applied to the bias vector.

  Input shape:
      4D tensor with shape:
      `(batch, channels, rows, cols)` if data_format='channels_first'
      or 4D tensor with shape:
      `(batch, rows, cols, channels)` if data_format='channels_last'.

  Output shape:
      4D tensor with shape:
      `(batch, filters, new_rows, new_cols)` if data_format='channels_first'
      or 4D tensor with shape:
      `(batch, new_rows, new_cols, filters)` if data_format='channels_last'.
      `rows` and `cols` values might have changed due to padding.

  References:
      - [A guide to convolution arithmetic for deep
        learning](https://arxiv.org/abs/1603.07285v1)
      - [Deconvolutional
        Networks](http://www.matthewzeiler.com/pubs/cvpr2010/cvpr2010.pdf)
  """

  def __init__(self,
               filters,
               kernel_size,
               strides=(1, 1),
               padding='valid',
               data_format=None,
               activation=None,
               use_bias=True,
               kernel_initializer='glorot_uniform',
               bias_initializer='zeros',
               kernel_regularizer=None,
               bias_regularizer=None,
               activity_regularizer=None,
               kernel_constraint=None,
               bias_constraint=None,
               **kwargs):
    super(Conv2DTranspose, self).__init__(
        filters=filters,
        kernel_size=kernel_size,
        strides=strides,
        padding=padding,
        data_format=data_format,
        activation=activations.get(activation),
        use_bias=use_bias,
        kernel_initializer=initializers.get(kernel_initializer),
        bias_initializer=initializers.get(bias_initializer),
        kernel_regularizer=regularizers.get(kernel_regularizer),
        bias_regularizer=regularizers.get(bias_regularizer),
        activity_regularizer=regularizers.get(activity_regularizer),
        kernel_constraint=constraints.get(kernel_constraint),
        bias_constraint=constraints.get(bias_constraint),
        **kwargs)

  def build(self, input_shape):
    input_shape = tensor_shape.TensorShape(input_shape)
    if len(input_shape) != 4:
      raise ValueError('Inputs should have rank 4. Received input shape: ' +
                       str(input_shape))
    if self.data_format == 'channels_first':
      channel_axis = 1
    else:
      channel_axis = -1
    if input_shape[channel_axis].value is None:
      raise ValueError('The channel dimension of the inputs '
                       'should be defined. Found `None`.')
    input_dim = int(input_shape[channel_axis])
    self.input_spec = InputSpec(ndim=4, axes={channel_axis: input_dim})
    kernel_shape = self.kernel_size + (self.filters, input_dim)

    self.kernel = self.add_variable(name='kernel',
                                    shape=kernel_shape,
                                    initializer=self.kernel_initializer,
                                    regularizer=self.kernel_regularizer,
                                    constraint=self.kernel_constraint,
                                    trainable=True,
                                    dtype=self.dtype)
    if self.use_bias:
      self.bias = self.add_variable(name='bias',
                                    shape=(self.filters,),
                                    initializer=self.bias_initializer,
                                    regularizer=self.bias_regularizer,
                                    constraint=self.bias_constraint,
                                    trainable=True,
                                    dtype=self.dtype)
    else:
      self.bias = None
    self.built = True

  def call(self, inputs):
    inputs_shape = array_ops.shape(inputs)
    batch_size = inputs_shape[0]
    if self.data_format == 'channels_first':
      c_axis, h_axis, w_axis = 1, 2, 3
    else:
      c_axis, h_axis, w_axis = 3, 1, 2

    height, width = inputs_shape[h_axis], inputs_shape[w_axis]
    kernel_h, kernel_w = self.kernel_size
    stride_h, stride_w = self.strides

    # Infer the dynamic output shape:
    out_height = conv_utils.deconv_output_length(height,
                                                 kernel_h,
                                                 self.padding,
                                                 stride_h)
    out_width = conv_utils.deconv_output_length(width,
                                                kernel_w,
                                                self.padding,
                                                stride_w)
    if self.data_format == 'channels_first':
      output_shape = (batch_size, self.filters, out_height, out_width)
      strides = (1, 1, stride_h, stride_w)
    else:
      output_shape = (batch_size, out_height, out_width, self.filters)
      strides = (1, stride_h, stride_w, 1)

    output_shape_tensor = array_ops.stack(output_shape)
    outputs = nn.conv2d_transpose(
        inputs,
        self.kernel,
        output_shape_tensor,
        strides,
        padding=self.padding.upper(),
        data_format=conv_utils.convert_data_format(self.data_format, ndim=4))

    if not context.executing_eagerly():
      # Infer the static output shape:
      out_shape = inputs.get_shape().as_list()
      out_shape[c_axis] = self.filters
      out_shape[h_axis] = conv_utils.deconv_output_length(out_shape[h_axis],
                                                          kernel_h,
                                                          self.padding,
                                                          stride_h)
      out_shape[w_axis] = conv_utils.deconv_output_length(out_shape[w_axis],
                                                          kernel_w,
                                                          self.padding,
                                                          stride_w)
      outputs.set_shape(out_shape)

    if self.use_bias:
      outputs = nn.bias_add(
          outputs,
          self.bias,
          data_format=conv_utils.convert_data_format(self.data_format, ndim=4))

    if self.activation is not None:
      return self.activation(outputs)
    return outputs

  def compute_output_shape(self, input_shape):
    input_shape = tensor_shape.TensorShape(input_shape).as_list()
    output_shape = list(input_shape)
    if self.data_format == 'channels_first':
      c_axis, h_axis, w_axis = 1, 2, 3
    else:
      c_axis, h_axis, w_axis = 3, 1, 2

    kernel_h, kernel_w = self.kernel_size
    stride_h, stride_w = self.strides

    output_shape[c_axis] = self.filters
    output_shape[h_axis] = conv_utils.deconv_output_length(
        output_shape[h_axis], kernel_h, self.padding, stride_h)
    output_shape[w_axis] = conv_utils.deconv_output_length(
        output_shape[w_axis], kernel_w, self.padding, stride_w)
    return tensor_shape.TensorShape(output_shape)


@tf_export('keras.layers.Conv3DTranspose',
           'keras.layers.Convolution3DTranspose')
class Conv3DTranspose(Conv3D):
  """Transposed convolution layer (sometimes called Deconvolution).

  The need for transposed convolutions generally arises
  from the desire to use a transformation going in the opposite direction
  of a normal convolution, i.e., from something that has the shape of the
  output of some convolution to something that has the shape of its input
  while maintaining a connectivity pattern that is compatible with
  said convolution.

  When using this layer as the first layer in a model,
  provide the keyword argument `input_shape`
  (tuple of integers, does not include the sample axis),
  e.g. `input_shape=(128, 128, 128, 3)` for a 128x128x128 volume with 3 channels
  if `data_format="channels_last"`.

  Arguments:
      filters: Integer, the dimensionality of the output space
          (i.e. the number of output filters in the convolution).
      kernel_size: An integer or tuple/list of 3 integers, specifying the
          depth, height and width of the 3D convolution window.
          Can be a single integer to specify the same value for
          all spatial dimensions.
      strides: An integer or tuple/list of 3 integers,
          specifying the strides of the convolution along the depth, height
            and width.
          Can be a single integer to specify the same value for
          all spatial dimensions.
          Specifying any stride value != 1 is incompatible with specifying
          any `dilation_rate` value != 1.
      padding: one of `"valid"` or `"same"` (case-insensitive).
      data_format: A string,
          one of `channels_last` (default) or `channels_first`.
          The ordering of the dimensions in the inputs.
          `channels_last` corresponds to inputs with shape
          `(batch, depth, height, width, channels)` while `channels_first`
          corresponds to inputs with shape
          `(batch, channels, depth, height, width)`.
          It defaults to the `image_data_format` value found in your
          Keras config file at `~/.keras/keras.json`.
          If you never set it, then it will be "channels_last".
      dilation_rate: an integer or tuple/list of 3 integers, specifying
          the dilation rate to use for dilated convolution.
          Can be a single integer to specify the same value for
          all spatial dimensions.
          Currently, specifying any `dilation_rate` value != 1 is
          incompatible with specifying any stride value != 1.
      activation: Activation function to use
          (see [activations](../activations.md)).
          If you don't specify anything, no activation is applied
          (ie. "linear" activation: `a(x) = x`).
      use_bias: Boolean, whether the layer uses a bias vector.
      kernel_initializer: Initializer for the `kernel` weights matrix
          (see [initializers](../initializers.md)).
      bias_initializer: Initializer for the bias vector
          (see [initializers](../initializers.md)).
      kernel_regularizer: Regularizer function applied to
          the `kernel` weights matrix
          (see [regularizer](../regularizers.md)).
      bias_regularizer: Regularizer function applied to the bias vector
          (see [regularizer](../regularizers.md)).
      activity_regularizer: Regularizer function applied to
          the output of the layer (its "activation").
          (see [regularizer](../regularizers.md)).
      kernel_constraint: Constraint function applied to the kernel matrix
          (see [constraints](../constraints.md)).
      bias_constraint: Constraint function applied to the bias vector
          (see [constraints](../constraints.md)).

  Input shape:
      5D tensor with shape:
      `(batch, channels, depth, rows, cols)` if data_format='channels_first'
      or 5D tensor with shape:
      `(batch, depth, rows, cols, channels)` if data_format='channels_last'.

  Output shape:
      5D tensor with shape:
      `(batch, filters, new_depth, new_rows, new_cols)` if
        data_format='channels_first'
      or 5D tensor with shape:
      `(batch, new_depth, new_rows, new_cols, filters)` if
        data_format='channels_last'.
      `depth` and `rows` and `cols` values might have changed due to padding.

  References:
      - [A guide to convolution arithmetic for deep
        learning](https://arxiv.org/abs/1603.07285v1)
      - [Deconvolutional
        Networks](http://www.matthewzeiler.com/pubs/cvpr2010/cvpr2010.pdf)
  """

  def __init__(self,
               filters,
               kernel_size,
               strides=(1, 1, 1),
               padding='valid',
               data_format=None,
               activation=None,
               use_bias=True,
               kernel_initializer='glorot_uniform',
               bias_initializer='zeros',
               kernel_regularizer=None,
               bias_regularizer=None,
               activity_regularizer=None,
               kernel_constraint=None,
               bias_constraint=None,
               **kwargs):
    super(Conv3DTranspose, self).__init__(
        filters=filters,
        kernel_size=kernel_size,
        strides=strides,
        padding=padding,
        data_format=data_format,
        activation=activations.get(activation),
        use_bias=use_bias,
        kernel_initializer=initializers.get(kernel_initializer),
        bias_initializer=initializers.get(bias_initializer),
        kernel_regularizer=regularizers.get(kernel_regularizer),
        bias_regularizer=regularizers.get(bias_regularizer),
        activity_regularizer=regularizers.get(activity_regularizer),
        kernel_constraint=constraints.get(kernel_constraint),
        bias_constraint=constraints.get(bias_constraint),
        **kwargs)

  def build(self, input_shape):
    input_shape = tensor_shape.TensorShape(input_shape)
    if len(input_shape) != 5:
      raise ValueError('Inputs should have rank 5, received input shape:',
                       str(input_shape))
    if self.data_format == 'channels_first':
      channel_axis = 1
    else:
      channel_axis = -1
    if input_shape[channel_axis].value is None:
      raise ValueError('The channel dimension of the inputs '
                       'should be defined, found None: ' + str(input_shape))
    input_dim = int(input_shape[channel_axis])
    kernel_shape = self.kernel_size + (self.filters, input_dim)
    self.input_spec = InputSpec(ndim=5, axes={channel_axis: input_dim})

    self.kernel = self.add_variable(
        'kernel',
        shape=kernel_shape,
        initializer=self.kernel_initializer,
        regularizer=self.kernel_regularizer,
        constraint=self.kernel_constraint,
        trainable=True,
        dtype=self.dtype)
    if self.use_bias:
      self.bias = self.add_variable(
          'bias',
          shape=(self.filters,),
          initializer=self.bias_initializer,
          regularizer=self.bias_regularizer,
          constraint=self.bias_constraint,
          trainable=True,
          dtype=self.dtype)
    else:
      self.bias = None
    self.built = True

  def call(self, inputs):
    inputs_shape = array_ops.shape(inputs)
    batch_size = inputs_shape[0]
    if self.data_format == 'channels_first':
      c_axis, d_axis, h_axis, w_axis = 1, 2, 3, 4
    else:
      c_axis, d_axis, h_axis, w_axis = 4, 1, 2, 3

    self.input_spec = InputSpec(ndim=5, axes={c_axis: inputs_shape[c_axis]})

    depth = inputs_shape[d_axis]
    height = inputs_shape[h_axis]
    width = inputs_shape[w_axis]

    kernel_d, kernel_h, kernel_w = self.kernel_size
    stride_d, stride_h, stride_w = self.strides

    # Infer the dynamic output shape:
    out_depth = conv_utils.deconv_output_length(depth,
                                                kernel_d,
                                                self.padding,
                                                stride_d)
    out_height = conv_utils.deconv_output_length(height,
                                                 kernel_h,
                                                 self.padding,
                                                 stride_h)
    out_width = conv_utils.deconv_output_length(width,
                                                kernel_w,
                                                self.padding,
                                                stride_w)
    if self.data_format == 'channels_first':
      output_shape = (batch_size, self.filters, out_depth, out_height,
                      out_width)
      strides = (1, 1, stride_d, stride_h, stride_w)
    else:
      output_shape = (batch_size, out_depth, out_height, out_width,
                      self.filters)
      strides = (1, stride_d, stride_h, stride_w, 1)

    output_shape_tensor = array_ops.stack(output_shape)
    outputs = nn.conv3d_transpose(
        inputs,
        self.kernel,
        output_shape_tensor,
        strides,
        data_format=conv_utils.convert_data_format(self.data_format, ndim=5),
        padding=self.padding.upper())

    if not context.executing_eagerly():
      # Infer the static output shape:
      out_shape = inputs.get_shape().as_list()
      out_shape[c_axis] = self.filters
      out_shape[d_axis] = conv_utils.deconv_output_length(out_shape[d_axis],
                                                          kernel_d,
                                                          self.padding,
                                                          stride_d)
      out_shape[h_axis] = conv_utils.deconv_output_length(out_shape[h_axis],
                                                          kernel_h,
                                                          self.padding,
                                                          stride_h)
      out_shape[w_axis] = conv_utils.deconv_output_length(out_shape[w_axis],
                                                          kernel_w,
                                                          self.padding,
                                                          stride_w)
      outputs.set_shape(out_shape)

    if self.use_bias:
      outputs_shape = outputs.shape.as_list()
      if outputs_shape[0] is None:
        outputs_shape[0] = -1
      if self.data_format == 'channels_first':
        outputs_4d = array_ops.reshape(outputs, [
            outputs_shape[0], outputs_shape[1],
            outputs_shape[2] * outputs_shape[3], outputs_shape[4]
        ])
      else:
        outputs_4d = array_ops.reshape(outputs, [
            outputs_shape[0], outputs_shape[1] * outputs_shape[2],
            outputs_shape[3], outputs_shape[4]
        ])
      outputs_4d = nn.bias_add(
          outputs_4d,
          self.bias,
          data_format=conv_utils.convert_data_format(self.data_format, ndim=4))
      outputs = array_ops.reshape(outputs_4d, outputs_shape)

    if self.activation is not None:
      return self.activation(outputs)
    return outputs

  def compute_output_shape(self, input_shape):
    input_shape = tensor_shape.TensorShape(input_shape).as_list()
    output_shape = list(input_shape)
    if self.data_format == 'channels_first':
      c_axis, d_axis, h_axis, w_axis = 1, 2, 3, 4
    else:
      c_axis, d_axis, h_axis, w_axis = 4, 1, 2, 3

    kernel_d, kernel_h, kernel_w = self.kernel_size
    stride_d, stride_h, stride_w = self.strides

    output_shape[c_axis] = self.filters
    output_shape[d_axis] = conv_utils.deconv_output_length(
        output_shape[d_axis], kernel_d, self.padding, stride_d)
    output_shape[h_axis] = conv_utils.deconv_output_length(
        output_shape[h_axis], kernel_h, self.padding, stride_h)
    output_shape[w_axis] = conv_utils.deconv_output_length(
        output_shape[w_axis], kernel_w, self.padding, stride_w)
    return tensor_shape.TensorShape(output_shape)


class SeparableConv(Conv):
  """Abstract base layer for separable nD convolution.

  This layer performs a depthwise convolution that acts separately on
  channels, followed by a pointwise convolution that mixes channels.
  If `use_bias` is True and a bias initializer is provided,
  it adds a bias vector to the output.
  It then optionally applies an activation function to produce the final output.

  Arguments:
    rank: An integer, the rank of the convolution, e.g. "2" for 2D convolution.
    filters: Integer, the dimensionality of the output space (i.e. the number
      of filters in the convolution).
    kernel_size: A tuple or list of integers specifying the spatial
      dimensions of the filters. Can be a single integer to specify the same
      value for all spatial dimensions.
    strides: A tuple or list of integers specifying the strides
      of the convolution. Can be a single integer to specify the same value for
      all spatial dimensions.
      Specifying any `stride` value != 1 is incompatible with specifying
      any `dilation_rate` value != 1.
    padding: One of `"valid"` or `"same"` (case-insensitive).
    data_format: A string, one of `channels_last` (default) or `channels_first`.
      The ordering of the dimensions in the inputs.
      `channels_last` corresponds to inputs with shape
      `(batch, ..., channels)` while `channels_first` corresponds to
      inputs with shape `(batch, channels, ...)`.
    dilation_rate: An integer or tuple/list of 2 integers, specifying
      the dilation rate to use for dilated convolution.
      Can be a single integer to specify the same value for
      all spatial dimensions.
      Currently, specifying any `dilation_rate` value != 1 is
      incompatible with specifying any stride value != 1.
    depth_multiplier: The number of depthwise convolution output channels for
      each input channel. The total number of depthwise convolution output
      channels will be equal to `num_filters_in * depth_multiplier`.
    activation: Activation function. Set it to None to maintain a
      linear activation.
    use_bias: Boolean, whether the layer uses a bias.
    depthwise_initializer: An initializer for the depthwise convolution kernel.
    pointwise_initializer: An initializer for the pointwise convolution kernel.
    bias_initializer: An initializer for the bias vector. If None, the default
      initializer will be used.
    depthwise_regularizer: Optional regularizer for the depthwise
      convolution kernel.
    pointwise_regularizer: Optional regularizer for the pointwise
      convolution kernel.
    bias_regularizer: Optional regularizer for the bias vector.
    activity_regularizer: Optional regularizer function for the output.
    depthwise_constraint: Optional projection function to be applied to the
        depthwise kernel after being updated by an `Optimizer` (e.g. used for
        norm constraints or value constraints for layer weights). The function
        must take as input the unprojected variable and must return the
        projected variable (which must have the same shape). Constraints are
        not safe to use when doing asynchronous distributed training.
    pointwise_constraint: Optional projection function to be applied to the
        pointwise kernel after being updated by an `Optimizer`.
    bias_constraint: Optional projection function to be applied to the
        bias after being updated by an `Optimizer`.
    trainable: Boolean, if `True` also add variables to the graph collection
      `GraphKeys.TRAINABLE_VARIABLES` (see `tf.Variable`).
    name: A string, the name of the layer.
  """

  def __init__(self,
               rank,
               filters,
               kernel_size,
               strides=1,
               padding='valid',
               data_format=None,
               dilation_rate=1,
               depth_multiplier=1,
               activation=None,
               use_bias=True,
               depthwise_initializer='glorot_uniform',
               pointwise_initializer='glorot_uniform',
               bias_initializer='zeros',
               depthwise_regularizer=None,
               pointwise_regularizer=None,
               bias_regularizer=None,
               activity_regularizer=None,
               depthwise_constraint=None,
               pointwise_constraint=None,
               bias_constraint=None,
               trainable=True,
               name=None,
               **kwargs):
    super(SeparableConv, self).__init__(
        rank=rank,
        filters=filters,
        kernel_size=kernel_size,
        strides=strides,
        padding=padding,
        data_format=data_format,
        dilation_rate=dilation_rate,
        activation=activations.get(activation),
        use_bias=use_bias,
        bias_regularizer=regularizers.get(bias_regularizer),
        activity_regularizer=regularizers.get(activity_regularizer),
        bias_constraint=bias_constraint,
        trainable=trainable,
        name=name,
        **kwargs)
    self.depth_multiplier = depth_multiplier
    self.depthwise_initializer = initializers.get(depthwise_initializer)
    self.pointwise_initializer = initializers.get(pointwise_initializer)
    self.depthwise_regularizer = regularizers.get(depthwise_regularizer)
    self.pointwise_regularizer = regularizers.get(pointwise_regularizer)
    self.depthwise_constraint = constraints.get(depthwise_constraint)
    self.pointwise_constraint = constraints.get(pointwise_constraint)

  def build(self, input_shape):
    input_shape = tensor_shape.TensorShape(input_shape)
    if self.data_format == 'channels_first':
      channel_axis = 1
    else:
      channel_axis = -1
    if input_shape[channel_axis].value is None:
      raise ValueError('The channel dimension of the inputs '
                       'should be defined. Found `None`.')
    input_dim = int(input_shape[channel_axis])
    self.input_spec = InputSpec(ndim=self.rank + 2,
                                axes={channel_axis: input_dim})
    depthwise_kernel_shape = self.kernel_size + (input_dim,
                                                 self.depth_multiplier)
    pointwise_kernel_shape = (
        1,) * self.rank + (self.depth_multiplier * input_dim, self.filters)

    self.depthwise_kernel = self.add_variable(
        name='depthwise_kernel',
        shape=depthwise_kernel_shape,
        initializer=self.depthwise_initializer,
        regularizer=self.depthwise_regularizer,
        constraint=self.depthwise_constraint,
        trainable=True,
        dtype=self.dtype)
    self.pointwise_kernel = self.add_variable(
        name='pointwise_kernel',
        shape=pointwise_kernel_shape,
        initializer=self.pointwise_initializer,
        regularizer=self.pointwise_regularizer,
        constraint=self.pointwise_constraint,
        trainable=True,
        dtype=self.dtype)
    if self.use_bias:
      self.bias = self.add_variable(name='bias',
                                    shape=(self.filters,),
                                    initializer=self.bias_initializer,
                                    regularizer=self.bias_regularizer,
                                    constraint=self.bias_constraint,
                                    trainable=True,
                                    dtype=self.dtype)
    else:
      self.bias = None
    self.built = True

  def call(self, inputs):
    raise NotImplementedError

  def get_config(self):
    config = {
        'filters': self.filters,
        'kernel_size': self.kernel_size,
        'strides': self.strides,
        'padding': self.padding,
        'data_format': self.data_format,
        'dilation_rate': self.dilation_rate,
        'activation': activations.serialize(self.activation),
        'use_bias': self.use_bias,
        'depthwise_initializer':
            initializers.serialize(self.depthwise_initializer),
        'pointwise_initializer':
            initializers.serialize(self.pointwise_initializer),
        'bias_initializer': initializers.serialize(self.bias_initializer),
        'depthwise_regularizer':
            regularizers.serialize(self.depthwise_regularizer),
        'pointwise_regularizer':
            regularizers.serialize(self.pointwise_regularizer),
        'bias_regularizer': regularizers.serialize(self.bias_regularizer),
        'activity_regularizer':
            regularizers.serialize(self.activity_regularizer),
        'depthwise_constraint':
            constraints.serialize(self.depthwise_constraint),
        'pointwise_constraint':
            constraints.serialize(self.pointwise_constraint),
        'bias_constraint': constraints.serialize(self.bias_constraint)
    }
    base_config = super(SeparableConv, self).get_config()
    return dict(list(base_config.items()) + list(config.items()))


@tf_export('keras.layers.SeparableConv1D',
           'keras.layers.SeparableConvolution1D')
class SeparableConv1D(SeparableConv):
  """Depthwise separable 1D convolution.

  This layer performs a depthwise convolution that acts separately on
  channels, followed by a pointwise convolution that mixes channels.
  If `use_bias` is True and a bias initializer is provided,
  it adds a bias vector to the output.
  It then optionally applies an activation function to produce the final output.

  Arguments:
    filters: Integer, the dimensionality of the output space (i.e. the number
      of filters in the convolution).
    kernel_size: A single integer specifying the spatial
      dimensions of the filters.
    strides: A single integer specifying the strides
      of the convolution.
      Specifying any `stride` value != 1 is incompatible with specifying
      any `dilation_rate` value != 1.
    padding: One of `"valid"` or `"same"` (case-insensitive).
    data_format: A string, one of `channels_last` (default) or `channels_first`.
      The ordering of the dimensions in the inputs.
      `channels_last` corresponds to inputs with shape
      `(batch, length, channels)` while `channels_first` corresponds to
      inputs with shape `(batch, channels, length)`.
    dilation_rate: A single integer, specifying
      the dilation rate to use for dilated convolution.
      Currently, specifying any `dilation_rate` value != 1 is
      incompatible with specifying any stride value != 1.
    depth_multiplier: The number of depthwise convolution output channels for
      each input channel. The total number of depthwise convolution output
      channels will be equal to `num_filters_in * depth_multiplier`.
    activation: Activation function. Set it to None to maintain a
      linear activation.
    use_bias: Boolean, whether the layer uses a bias.
    depthwise_initializer: An initializer for the depthwise convolution kernel.
    pointwise_initializer: An initializer for the pointwise convolution kernel.
    bias_initializer: An initializer for the bias vector. If None, the default
      initializer will be used.
    depthwise_regularizer: Optional regularizer for the depthwise
      convolution kernel.
    pointwise_regularizer: Optional regularizer for the pointwise
      convolution kernel.
    bias_regularizer: Optional regularizer for the bias vector.
    activity_regularizer: Optional regularizer function for the output.
    depthwise_constraint: Optional projection function to be applied to the
        depthwise kernel after being updated by an `Optimizer` (e.g. used for
        norm constraints or value constraints for layer weights). The function
        must take as input the unprojected variable and must return the
        projected variable (which must have the same shape). Constraints are
        not safe to use when doing asynchronous distributed training.
    pointwise_constraint: Optional projection function to be applied to the
        pointwise kernel after being updated by an `Optimizer`.
    bias_constraint: Optional projection function to be applied to the
        bias after being updated by an `Optimizer`.
    trainable: Boolean, if `True` also add variables to the graph collection
      `GraphKeys.TRAINABLE_VARIABLES` (see `tf.Variable`).
    name: A string, the name of the layer.
  """

  def __init__(self,
               filters,
               kernel_size,
               strides=1,
               padding='valid',
               data_format=None,
               dilation_rate=1,
               depth_multiplier=1,
               activation=None,
               use_bias=True,
               depthwise_initializer='glorot_uniform',
               pointwise_initializer='glorot_uniform',
               bias_initializer='zeros',
               depthwise_regularizer=None,
               pointwise_regularizer=None,
               bias_regularizer=None,
               activity_regularizer=None,
               depthwise_constraint=None,
               pointwise_constraint=None,
               bias_constraint=None,
               **kwargs):
    super(SeparableConv1D, self).__init__(
        rank=1,
        filters=filters,
        kernel_size=kernel_size,
        strides=strides,
        padding=padding,
        data_format=data_format,
        dilation_rate=dilation_rate,
        depth_multiplier=depth_multiplier,
        activation=activations.get(activation),
        use_bias=use_bias,
        depthwise_initializer=initializers.get(depthwise_initializer),
        pointwise_initializer=initializers.get(pointwise_initializer),
        bias_initializer=initializers.get(bias_initializer),
        depthwise_regularizer=regularizers.get(depthwise_regularizer),
        pointwise_regularizer=regularizers.get(pointwise_regularizer),
        bias_regularizer=regularizers.get(bias_regularizer),
        activity_regularizer=regularizers.get(activity_regularizer),
        depthwise_constraint=constraints.get(depthwise_constraint),
        pointwise_constraint=constraints.get(pointwise_constraint),
        bias_constraint=constraints.get(bias_constraint),
        **kwargs)

  def call(self, inputs):
    if self.data_format == 'channels_last':
      strides = (1,) + self.strides * 2 + (1,)
      spatial_start_dim = 1
    else:
      strides = (1, 1) + self.strides * 2
      spatial_start_dim = 2

    # Explicitly broadcast inputs and kernels to 4D.
    # TODO(fchollet): refactor when a native separable_conv1d op is available.
    inputs = array_ops.expand_dims(inputs, spatial_start_dim)
    depthwise_kernel = array_ops.expand_dims(self.depthwise_kernel, 0)
    pointwise_kernel = array_ops.expand_dims(self.pointwise_kernel, 0)
    dilation_rate = (1,) + self.dilation_rate

    outputs = nn.separable_conv2d(
        inputs,
        depthwise_kernel,
        pointwise_kernel,
        strides=strides,
        padding=self.padding.upper(),
        rate=dilation_rate,
        data_format=conv_utils.convert_data_format(self.data_format, ndim=4))

    if self.use_bias:
      outputs = nn.bias_add(
          outputs,
          self.bias,
          data_format=conv_utils.convert_data_format(self.data_format, ndim=4))

    outputs = array_ops.squeeze(outputs, [spatial_start_dim])

    if self.activation is not None:
      return self.activation(outputs)
    return outputs


@tf_export('keras.layers.SeparableConv2D',
           'keras.layers.SeparableConvolution2D')
class SeparableConv2D(SeparableConv):
  """Depthwise separable 2D convolution.

  Separable convolutions consist in first performing
  a depthwise spatial convolution
  (which acts on each input channel separately)
  followed by a pointwise convolution which mixes together the resulting
  output channels. The `depth_multiplier` argument controls how many
  output channels are generated per input channel in the depthwise step.

  Intuitively, separable convolutions can be understood as
  a way to factorize a convolution kernel into two smaller kernels,
  or as an extreme version of an Inception block.

  Arguments:
      filters: Integer, the dimensionality of the output space
          (i.e. the number of output filters in the convolution).
      kernel_size: An integer or tuple/list of 2 integers, specifying the
          width and height of the 2D convolution window.
          Can be a single integer to specify the same value for
          all spatial dimensions.
      strides: An integer or tuple/list of 2 integers,
          specifying the strides of the convolution along the width and height.
          Can be a single integer to specify the same value for
          all spatial dimensions.
          Specifying any stride value != 1 is incompatible with specifying
          any `dilation_rate` value != 1.
      padding: one of `"valid"` or `"same"` (case-insensitive).
      data_format: A string,
          one of `channels_last` (default) or `channels_first`.
          The ordering of the dimensions in the inputs.
          `channels_last` corresponds to inputs with shape
          `(batch, height, width, channels)` while `channels_first`
          corresponds to inputs with shape
          `(batch, channels, height, width)`.
          It defaults to the `image_data_format` value found in your
          Keras config file at `~/.keras/keras.json`.
          If you never set it, then it will be "channels_last".
      depth_multiplier: The number of depthwise convolution output channels
          for each input channel.
          The total number of depthwise convolution output
          channels will be equal to `filterss_in * depth_multiplier`.
      activation: Activation function to use.
          If you don't specify anything, no activation is applied
          (ie. "linear" activation: `a(x) = x`).
      use_bias: Boolean, whether the layer uses a bias vector.
      depthwise_initializer: Initializer for the depthwise kernel matrix.
      pointwise_initializer: Initializer for the pointwise kernel matrix.
      bias_initializer: Initializer for the bias vector.
      depthwise_regularizer: Regularizer function applied to
          the depthwise kernel matrix.
      pointwise_regularizer: Regularizer function applied to
          the pointwise kernel matrix.
      bias_regularizer: Regularizer function applied to the bias vector.
      activity_regularizer: Regularizer function applied to
          the output of the layer (its "activation")..
      depthwise_constraint: Constraint function applied to
          the depthwise kernel matrix.
      pointwise_constraint: Constraint function applied to
          the pointwise kernel matrix.
      bias_constraint: Constraint function applied to the bias vector.

  Input shape:
      4D tensor with shape:
      `(batch, channels, rows, cols)` if data_format='channels_first'
      or 4D tensor with shape:
      `(batch, rows, cols, channels)` if data_format='channels_last'.

  Output shape:
      4D tensor with shape:
      `(batch, filters, new_rows, new_cols)` if data_format='channels_first'
      or 4D tensor with shape:
      `(batch, new_rows, new_cols, filters)` if data_format='channels_last'.
      `rows` and `cols` values might have changed due to padding.
  """

  def __init__(self,
               filters,
               kernel_size,
               strides=(1, 1),
               padding='valid',
               data_format=None,
               dilation_rate=1,
               depth_multiplier=1,
               activation=None,
               use_bias=True,
               depthwise_initializer='glorot_uniform',
               pointwise_initializer='glorot_uniform',
               bias_initializer='zeros',
               depthwise_regularizer=None,
               pointwise_regularizer=None,
               bias_regularizer=None,
               activity_regularizer=None,
               depthwise_constraint=None,
               pointwise_constraint=None,
               bias_constraint=None,
               **kwargs):
    super(SeparableConv2D, self).__init__(
        rank=2,
        filters=filters,
        kernel_size=kernel_size,
        strides=strides,
        padding=padding,
        data_format=data_format,
        dilation_rate=dilation_rate,
        depth_multiplier=depth_multiplier,
        activation=activations.get(activation),
        use_bias=use_bias,
        depthwise_initializer=initializers.get(depthwise_initializer),
        pointwise_initializer=initializers.get(pointwise_initializer),
        bias_initializer=initializers.get(bias_initializer),
        depthwise_regularizer=regularizers.get(depthwise_regularizer),
        pointwise_regularizer=regularizers.get(pointwise_regularizer),
        bias_regularizer=regularizers.get(bias_regularizer),
        activity_regularizer=regularizers.get(activity_regularizer),
        depthwise_constraint=constraints.get(depthwise_constraint),
        pointwise_constraint=constraints.get(pointwise_constraint),
        bias_constraint=constraints.get(bias_constraint),
        **kwargs)

  def call(self, inputs):
    # Apply the actual ops.
    if self.data_format == 'channels_last':
      strides = (1,) + self.strides + (1,)
    else:
      strides = (1, 1) + self.strides
    outputs = nn.separable_conv2d(
        inputs,
        self.depthwise_kernel,
        self.pointwise_kernel,
        strides=strides,
        padding=self.padding.upper(),
        rate=self.dilation_rate,
        data_format=conv_utils.convert_data_format(self.data_format, ndim=4))

    if self.use_bias:
      outputs = nn.bias_add(
          outputs,
          self.bias,
          data_format=conv_utils.convert_data_format(self.data_format, ndim=4))

    if self.activation is not None:
      return self.activation(outputs)
    return outputs


@tf_export('keras.layers.DepthwiseConv2D')
class DepthwiseConv2D(Conv2D):
  """Depthwise separable 2D convolution.

  Depthwise Separable convolutions consists in performing
  just the first step in a depthwise spatial convolution
  (which acts on each input channel separately).
  The `depth_multiplier` argument controls how many
  output channels are generated per input channel in the depthwise step.

  Arguments:
    kernel_size: An integer or tuple/list of 2 integers, specifying the
        width and height of the 2D convolution window.
        Can be a single integer to specify the same value for
        all spatial dimensions.
    strides: An integer or tuple/list of 2 integers,
        specifying the strides of the convolution along the width and height.
        Can be a single integer to specify the same value for
        all spatial dimensions.
        Specifying any stride value != 1 is incompatible with specifying
        any `dilation_rate` value != 1.
    padding: one of `'valid'` or `'same'` (case-insensitive).
    depth_multiplier: The number of depthwise convolution output channels
        for each input channel.
        The total number of depthwise convolution output
        channels will be equal to `filters_in * depth_multiplier`.
    data_format: A string,
        one of `channels_last` (default) or `channels_first`.
        The ordering of the dimensions in the inputs.
        `channels_last` corresponds to inputs with shape
        `(batch, height, width, channels)` while `channels_first`
        corresponds to inputs with shape
        `(batch, channels, height, width)`.
        It defaults to the `image_data_format` value found in your
        Keras config file at `~/.keras/keras.json`.
        If you never set it, then it will be 'channels_last'.
    activation: Activation function to use.
        If you don't specify anything, no activation is applied
        (ie. 'linear' activation: `a(x) = x`).
    use_bias: Boolean, whether the layer uses a bias vector.
    depthwise_initializer: Initializer for the depthwise kernel matrix.
    bias_initializer: Initializer for the bias vector.
    depthwise_regularizer: Regularizer function applied to
        the depthwise kernel matrix.
    bias_regularizer: Regularizer function applied to the bias vector.
    activity_regularizer: Regularizer function applied to
        the output of the layer (its 'activation').
    depthwise_constraint: Constraint function applied to
        the depthwise kernel matrix.
    bias_constraint: Constraint function applied to the bias vector.

  Input shape:
    4D tensor with shape:
    `[batch, channels, rows, cols]` if data_format='channels_first'
    or 4D tensor with shape:
    `[batch, rows, cols, channels]` if data_format='channels_last'.

  Output shape:
    4D tensor with shape:
    `[batch, filters, new_rows, new_cols]` if data_format='channels_first'
    or 4D tensor with shape:
    `[batch, new_rows, new_cols, filters]` if data_format='channels_last'.
    `rows` and `cols` values might have changed due to padding.
  """

  def __init__(self,
               kernel_size,
               strides=(1, 1),
               padding='valid',
               depth_multiplier=1,
               data_format=None,
               activation=None,
               use_bias=True,
               depthwise_initializer='glorot_uniform',
               bias_initializer='zeros',
               depthwise_regularizer=None,
               bias_regularizer=None,
               activity_regularizer=None,
               depthwise_constraint=None,
               bias_constraint=None,
               **kwargs):
    super(DepthwiseConv2D, self).__init__(
        filters=None,
        kernel_size=kernel_size,
        strides=strides,
        padding=padding,
        data_format=data_format,
        activation=activation,
        use_bias=use_bias,
        bias_regularizer=bias_regularizer,
        activity_regularizer=activity_regularizer,
        bias_constraint=bias_constraint,
        **kwargs)
    self.depth_multiplier = depth_multiplier
    self.depthwise_initializer = initializers.get(depthwise_initializer)
    self.depthwise_regularizer = regularizers.get(depthwise_regularizer)
    self.depthwise_constraint = constraints.get(depthwise_constraint)
    self.bias_initializer = initializers.get(bias_initializer)

  def build(self, input_shape):
    if len(input_shape) < 4:
      raise ValueError('Inputs to `DepthwiseConv2D` should have rank 4. '
                       'Received input shape:', str(input_shape))
    if self.data_format == 'channels_first':
      channel_axis = 1
    else:
      channel_axis = 3
    if input_shape[channel_axis] is None:
      raise ValueError('The channel dimension of the inputs to '
                       '`DepthwiseConv2D` '
                       'should be defined. Found `None`.')
    input_dim = int(input_shape[channel_axis])
    depthwise_kernel_shape = (self.kernel_size[0],
                              self.kernel_size[1],
                              input_dim,
                              self.depth_multiplier)

    self.depthwise_kernel = self.add_weight(
        shape=depthwise_kernel_shape,
        initializer=self.depthwise_initializer,
        name='depthwise_kernel',
        regularizer=self.depthwise_regularizer,
        constraint=self.depthwise_constraint)

    if self.use_bias:
      self.bias = self.add_weight(shape=(input_dim * self.depth_multiplier,),
                                  initializer=self.bias_initializer,
                                  name='bias',
                                  regularizer=self.bias_regularizer,
                                  constraint=self.bias_constraint)
    else:
      self.bias = None
    # Set input spec.
    self.input_spec = InputSpec(ndim=4, axes={channel_axis: input_dim})
    self.built = True

  def call(self, inputs, training=None):
    outputs = backend.depthwise_conv2d(
        inputs,
        self.depthwise_kernel,
        strides=self.strides,
        padding=self.padding,
        dilation_rate=self.dilation_rate,
        data_format=self.data_format)

    if self.bias:
      outputs = backend.bias_add(
          outputs,
          self.bias,
          data_format=self.data_format)

    if self.activation is not None:
      return self.activation(outputs)

    return outputs

  @tf_utils.shape_type_conversion
  def compute_output_shape(self, input_shape):
    if self.data_format == 'channels_first':
      rows = input_shape[2]
      cols = input_shape[3]
      out_filters = input_shape[1] * self.depth_multiplier
    elif self.data_format == 'channels_last':
      rows = input_shape[1]
      cols = input_shape[2]
      out_filters = input_shape[3] * self.depth_multiplier

    rows = conv_utils.conv_output_length(rows, self.kernel_size[0],
                                         self.padding,
                                         self.strides[0])
    cols = conv_utils.conv_output_length(cols, self.kernel_size[1],
                                         self.padding,
                                         self.strides[1])
    if self.data_format == 'channels_first':
      return (input_shape[0], out_filters, rows, cols)
    elif self.data_format == 'channels_last':
      return (input_shape[0], rows, cols, out_filters)

  def get_config(self):
    config = super(DepthwiseConv2D, self).get_config()
    config.pop('filters')
    config.pop('kernel_initializer')
    config.pop('kernel_regularizer')
    config.pop('kernel_constraint')
    config['depth_multiplier'] = self.depth_multiplier
    config['depthwise_initializer'] = initializers.serialize(
        self.depthwise_initializer)
    config['depthwise_regularizer'] = regularizers.serialize(
        self.depthwise_regularizer)
    config['depthwise_constraint'] = constraints.serialize(
        self.depthwise_constraint)
    return config


@tf_export('keras.layers.UpSampling1D')
class UpSampling1D(Layer):
  """Upsampling layer for 1D inputs.

  Repeats each temporal step `size` times along the time axis.

  Arguments:
      size: integer. Upsampling factor.

  Input shape:
      3D tensor with shape: `(batch, steps, features)`.

  Output shape:
      3D tensor with shape: `(batch, upsampled_steps, features)`.
  """

  def __init__(self, size=2, **kwargs):
    super(UpSampling1D, self).__init__(**kwargs)
    self.size = int(size)
    self.input_spec = InputSpec(ndim=3)

  def compute_output_shape(self, input_shape):
    input_shape = tensor_shape.TensorShape(input_shape).as_list()
    size = self.size * input_shape[1] if input_shape[1] is not None else None
    return tensor_shape.TensorShape([input_shape[0], size, input_shape[2]])

  def call(self, inputs):
    output = backend.repeat_elements(inputs, self.size, axis=1)
    return output

  def get_config(self):
    config = {'size': self.size}
    base_config = super(UpSampling1D, self).get_config()
    return dict(list(base_config.items()) + list(config.items()))


@tf_export('keras.layers.UpSampling2D')
class UpSampling2D(Layer):
  """Upsampling layer for 2D inputs.

  Repeats the rows and columns of the data
  by size[0] and size[1] respectively.

  Arguments:
      size: int, or tuple of 2 integers.
          The upsampling factors for rows and columns.
      data_format: A string,
          one of `channels_last` (default) or `channels_first`.
          The ordering of the dimensions in the inputs.
          `channels_last` corresponds to inputs with shape
          `(batch, height, width, channels)` while `channels_first`
          corresponds to inputs with shape
          `(batch, channels, height, width)`.
          It defaults to the `image_data_format` value found in your
          Keras config file at `~/.keras/keras.json`.
          If you never set it, then it will be "channels_last".

  Input shape:
      4D tensor with shape:
      - If `data_format` is `"channels_last"`:
          `(batch, rows, cols, channels)`
      - If `data_format` is `"channels_first"`:
          `(batch, channels, rows, cols)`

  Output shape:
      4D tensor with shape:
      - If `data_format` is `"channels_last"`:
          `(batch, upsampled_rows, upsampled_cols, channels)`
      - If `data_format` is `"channels_first"`:
          `(batch, channels, upsampled_rows, upsampled_cols)`
  """

  def __init__(self, size=(2, 2), data_format=None, **kwargs):
    super(UpSampling2D, self).__init__(**kwargs)
    self.data_format = conv_utils.normalize_data_format(data_format)
    self.size = conv_utils.normalize_tuple(size, 2, 'size')
    self.input_spec = InputSpec(ndim=4)

  def compute_output_shape(self, input_shape):
    input_shape = tensor_shape.TensorShape(input_shape).as_list()
    if self.data_format == 'channels_first':
      height = self.size[0] * input_shape[
          2] if input_shape[2] is not None else None
      width = self.size[1] * input_shape[
          3] if input_shape[3] is not None else None
      return tensor_shape.TensorShape(
          [input_shape[0], input_shape[1], height, width])
    else:
      height = self.size[0] * input_shape[
          1] if input_shape[1] is not None else None
      width = self.size[1] * input_shape[
          2] if input_shape[2] is not None else None
      return tensor_shape.TensorShape(
          [input_shape[0], height, width, input_shape[3]])

  def call(self, inputs):
    return backend.resize_images(
        inputs, self.size[0], self.size[1], self.data_format)

  def get_config(self):
    config = {'size': self.size, 'data_format': self.data_format}
    base_config = super(UpSampling2D, self).get_config()
    return dict(list(base_config.items()) + list(config.items()))


@tf_export('keras.layers.UpSampling3D')
class UpSampling3D(Layer):
  """Upsampling layer for 3D inputs.

  Repeats the 1st, 2nd and 3rd dimensions
  of the data by size[0], size[1] and size[2] respectively.

  Arguments:
      size: int, or tuple of 3 integers.
          The upsampling factors for dim1, dim2 and dim3.
      data_format: A string,
          one of `channels_last` (default) or `channels_first`.
          The ordering of the dimensions in the inputs.
          `channels_last` corresponds to inputs with shape
          `(batch, spatial_dim1, spatial_dim2, spatial_dim3, channels)`
          while `channels_first` corresponds to inputs with shape
          `(batch, channels, spatial_dim1, spatial_dim2, spatial_dim3)`.
          It defaults to the `image_data_format` value found in your
          Keras config file at `~/.keras/keras.json`.
          If you never set it, then it will be "channels_last".

  Input shape:
      5D tensor with shape:
      - If `data_format` is `"channels_last"`:
          `(batch, dim1, dim2, dim3, channels)`
      - If `data_format` is `"channels_first"`:
          `(batch, channels, dim1, dim2, dim3)`

  Output shape:
      5D tensor with shape:
      - If `data_format` is `"channels_last"`:
          `(batch, upsampled_dim1, upsampled_dim2, upsampled_dim3, channels)`
      - If `data_format` is `"channels_first"`:
          `(batch, channels, upsampled_dim1, upsampled_dim2, upsampled_dim3)`
  """

  def __init__(self, size=(2, 2, 2), data_format=None, **kwargs):
    self.data_format = conv_utils.normalize_data_format(data_format)
    self.size = conv_utils.normalize_tuple(size, 3, 'size')
    self.input_spec = InputSpec(ndim=5)
    super(UpSampling3D, self).__init__(**kwargs)

  def compute_output_shape(self, input_shape):
    input_shape = tensor_shape.TensorShape(input_shape).as_list()
    if self.data_format == 'channels_first':
      dim1 = self.size[0] * input_shape[
          2] if input_shape[2] is not None else None
      dim2 = self.size[1] * input_shape[
          3] if input_shape[3] is not None else None
      dim3 = self.size[2] * input_shape[
          4] if input_shape[4] is not None else None
      return tensor_shape.TensorShape(
          [input_shape[0], input_shape[1], dim1, dim2, dim3])
    else:
      dim1 = self.size[0] * input_shape[
          1] if input_shape[1] is not None else None
      dim2 = self.size[1] * input_shape[
          2] if input_shape[2] is not None else None
      dim3 = self.size[2] * input_shape[
          3] if input_shape[3] is not None else None
      return tensor_shape.TensorShape(
          [input_shape[0], dim1, dim2, dim3, input_shape[4]])

  def call(self, inputs):
    return backend.resize_volumes(
        inputs, self.size[0], self.size[1], self.size[2], self.data_format)

  def get_config(self):
    config = {'size': self.size, 'data_format': self.data_format}
    base_config = super(UpSampling3D, self).get_config()
    return dict(list(base_config.items()) + list(config.items()))


@tf_export('keras.layers.ZeroPadding1D')
class ZeroPadding1D(Layer):
  """Zero-padding layer for 1D input (e.g. temporal sequence).

  Arguments:
      padding: int, or tuple of int (length 2), or dictionary.
          - If int:
          How many zeros to add at the beginning and end of
          the padding dimension (axis 1).
          - If tuple of int (length 2):
          How many zeros to add at the beginning and at the end of
          the padding dimension (`(left_pad, right_pad)`).

  Input shape:
      3D tensor with shape `(batch, axis_to_pad, features)`

  Output shape:
      3D tensor with shape `(batch, padded_axis, features)`
  """

  def __init__(self, padding=1, **kwargs):
    super(ZeroPadding1D, self).__init__(**kwargs)
    self.padding = conv_utils.normalize_tuple(padding, 2, 'padding')
    self.input_spec = InputSpec(ndim=3)

  def compute_output_shape(self, input_shape):
    if input_shape[1] is not None:
      length = input_shape[1] + self.padding[0] + self.padding[1]
    else:
      length = None
    return tensor_shape.TensorShape([input_shape[0], length, input_shape[2]])

  def call(self, inputs):
    return backend.temporal_padding(inputs, padding=self.padding)

  def get_config(self):
    config = {'padding': self.padding}
    base_config = super(ZeroPadding1D, self).get_config()
    return dict(list(base_config.items()) + list(config.items()))


@tf_export('keras.layers.ZeroPadding2D')
class ZeroPadding2D(Layer):
  """Zero-padding layer for 2D input (e.g. picture).

  This layer can add rows and columns of zeros
  at the top, bottom, left and right side of an image tensor.

  Arguments:
      padding: int, or tuple of 2 ints, or tuple of 2 tuples of 2 ints.
          - If int: the same symmetric padding
              is applied to width and height.
          - If tuple of 2 ints:
              interpreted as two different
              symmetric padding values for height and width:
              `(symmetric_height_pad, symmetric_width_pad)`.
          - If tuple of 2 tuples of 2 ints:
              interpreted as
              `((top_pad, bottom_pad), (left_pad, right_pad))`
      data_format: A string,
          one of `channels_last` (default) or `channels_first`.
          The ordering of the dimensions in the inputs.
          `channels_last` corresponds to inputs with shape
          `(batch, height, width, channels)` while `channels_first`
          corresponds to inputs with shape
          `(batch, channels, height, width)`.
          It defaults to the `image_data_format` value found in your
          Keras config file at `~/.keras/keras.json`.
          If you never set it, then it will be "channels_last".

  Input shape:
      4D tensor with shape:
      - If `data_format` is `"channels_last"`:
          `(batch, rows, cols, channels)`
      - If `data_format` is `"channels_first"`:
          `(batch, channels, rows, cols)`

  Output shape:
      4D tensor with shape:
      - If `data_format` is `"channels_last"`:
          `(batch, padded_rows, padded_cols, channels)`
      - If `data_format` is `"channels_first"`:
          `(batch, channels, padded_rows, padded_cols)`
  """

  def __init__(self, padding=(1, 1), data_format=None, **kwargs):
    super(ZeroPadding2D, self).__init__(**kwargs)
    self.data_format = conv_utils.normalize_data_format(data_format)
    if isinstance(padding, int):
      self.padding = ((padding, padding), (padding, padding))
    elif hasattr(padding, '__len__'):
      if len(padding) != 2:
        raise ValueError('`padding` should have two elements. '
                         'Found: ' + str(padding))
      height_padding = conv_utils.normalize_tuple(padding[0], 2,
                                                  '1st entry of padding')
      width_padding = conv_utils.normalize_tuple(padding[1], 2,
                                                 '2nd entry of padding')
      self.padding = (height_padding, width_padding)
    else:
      raise ValueError('`padding` should be either an int, '
                       'a tuple of 2 ints '
                       '(symmetric_height_pad, symmetric_width_pad), '
                       'or a tuple of 2 tuples of 2 ints '
                       '((top_pad, bottom_pad), (left_pad, right_pad)). '
                       'Found: ' + str(padding))
    self.input_spec = InputSpec(ndim=4)

  def compute_output_shape(self, input_shape):
    input_shape = tensor_shape.TensorShape(input_shape).as_list()
    if self.data_format == 'channels_first':
      if input_shape[2] is not None:
        rows = input_shape[2] + self.padding[0][0] + self.padding[0][1]
      else:
        rows = None
      if input_shape[3] is not None:
        cols = input_shape[3] + self.padding[1][0] + self.padding[1][1]
      else:
        cols = None
      return tensor_shape.TensorShape(
          [input_shape[0], input_shape[1], rows, cols])
    elif self.data_format == 'channels_last':
      if input_shape[1] is not None:
        rows = input_shape[1] + self.padding[0][0] + self.padding[0][1]
      else:
        rows = None
      if input_shape[2] is not None:
        cols = input_shape[2] + self.padding[1][0] + self.padding[1][1]
      else:
        cols = None
      return tensor_shape.TensorShape(
          [input_shape[0], rows, cols, input_shape[3]])

  def call(self, inputs):
    return backend.spatial_2d_padding(
        inputs, padding=self.padding, data_format=self.data_format)

  def get_config(self):
    config = {'padding': self.padding, 'data_format': self.data_format}
    base_config = super(ZeroPadding2D, self).get_config()
    return dict(list(base_config.items()) + list(config.items()))


@tf_export('keras.layers.ZeroPadding3D')
class ZeroPadding3D(Layer):
  """Zero-padding layer for 3D data (spatial or spatio-temporal).

  Arguments:
      padding: int, or tuple of 2 ints, or tuple of 2 tuples of 2 ints.
          - If int: the same symmetric padding
              is applied to width and height.
          - If tuple of 2 ints:
              interpreted as two different
              symmetric padding values for height and width:
              `(symmetric_dim1_pad, symmetric_dim2_pad, symmetric_dim3_pad)`.
          - If tuple of 2 tuples of 2 ints:
              interpreted as
              `((left_dim1_pad, right_dim1_pad), (left_dim2_pad,
                right_dim2_pad), (left_dim3_pad, right_dim3_pad))`
      data_format: A string,
          one of `channels_last` (default) or `channels_first`.
          The ordering of the dimensions in the inputs.
          `channels_last` corresponds to inputs with shape
          `(batch, spatial_dim1, spatial_dim2, spatial_dim3, channels)`
          while `channels_first` corresponds to inputs with shape
          `(batch, channels, spatial_dim1, spatial_dim2, spatial_dim3)`.
          It defaults to the `image_data_format` value found in your
          Keras config file at `~/.keras/keras.json`.
          If you never set it, then it will be "channels_last".

  Input shape:
      5D tensor with shape:
      - If `data_format` is `"channels_last"`:
          `(batch, first_axis_to_pad, second_axis_to_pad, third_axis_to_pad,
            depth)`
      - If `data_format` is `"channels_first"`:
          `(batch, depth, first_axis_to_pad, second_axis_to_pad,
            third_axis_to_pad)`

  Output shape:
      5D tensor with shape:
      - If `data_format` is `"channels_last"`:
          `(batch, first_padded_axis, second_padded_axis, third_axis_to_pad,
            depth)`
      - If `data_format` is `"channels_first"`:
          `(batch, depth, first_padded_axis, second_padded_axis,
            third_axis_to_pad)`
  """

  def __init__(self, padding=(1, 1, 1), data_format=None, **kwargs):
    super(ZeroPadding3D, self).__init__(**kwargs)
    self.data_format = conv_utils.normalize_data_format(data_format)
    if isinstance(padding, int):
      self.padding = ((padding, padding), (padding, padding), (padding,
                                                               padding))
    elif hasattr(padding, '__len__'):
      if len(padding) != 3:
        raise ValueError('`padding` should have 3 elements. '
                         'Found: ' + str(padding))
      dim1_padding = conv_utils.normalize_tuple(padding[0], 2,
                                                '1st entry of padding')
      dim2_padding = conv_utils.normalize_tuple(padding[1], 2,
                                                '2nd entry of padding')
      dim3_padding = conv_utils.normalize_tuple(padding[2], 2,
                                                '3rd entry of padding')
      self.padding = (dim1_padding, dim2_padding, dim3_padding)
    else:
      raise ValueError(
          '`padding` should be either an int, '
          'a tuple of 3 ints '
          '(symmetric_dim1_pad, symmetric_dim2_pad, symmetric_dim3_pad), '
          'or a tuple of 3 tuples of 2 ints '
          '((left_dim1_pad, right_dim1_pad),'
          ' (left_dim2_pad, right_dim2_pad),'
          ' (left_dim3_pad, right_dim2_pad)). '
          'Found: ' + str(padding))
    self.input_spec = InputSpec(ndim=5)

  def compute_output_shape(self, input_shape):
    input_shape = tensor_shape.TensorShape(input_shape).as_list()
    if self.data_format == 'channels_first':
      if input_shape[2] is not None:
        dim1 = input_shape[2] + 2 * self.padding[0][0]
      else:
        dim1 = None
      if input_shape[3] is not None:
        dim2 = input_shape[3] + 2 * self.padding[1][0]
      else:
        dim2 = None
      if input_shape[4] is not None:
        dim3 = input_shape[4] + 2 * self.padding[2][0]
      else:
        dim3 = None
      return tensor_shape.TensorShape(
          [input_shape[0], input_shape[1], dim1, dim2, dim3])
    elif self.data_format == 'channels_last':
      if input_shape[1] is not None:
        dim1 = input_shape[1] + 2 * self.padding[0][1]
      else:
        dim1 = None
      if input_shape[2] is not None:
        dim2 = input_shape[2] + 2 * self.padding[1][1]
      else:
        dim2 = None
      if input_shape[3] is not None:
        dim3 = input_shape[3] + 2 * self.padding[2][1]
      else:
        dim3 = None
      return tensor_shape.TensorShape(
          [input_shape[0], dim1, dim2, dim3, input_shape[4]])

  def call(self, inputs):
    return backend.spatial_3d_padding(
        inputs, padding=self.padding, data_format=self.data_format)

  def get_config(self):
    config = {'padding': self.padding, 'data_format': self.data_format}
    base_config = super(ZeroPadding3D, self).get_config()
    return dict(list(base_config.items()) + list(config.items()))


@tf_export('keras.layers.Cropping1D')
class Cropping1D(Layer):
  """Cropping layer for 1D input (e.g. temporal sequence).

  It crops along the time dimension (axis 1).

  Arguments:
      cropping: int or tuple of int (length 2)
          How many units should be trimmed off at the beginning and end of
          the cropping dimension (axis 1).
          If a single int is provided,
          the same value will be used for both.

  Input shape:
      3D tensor with shape `(batch, axis_to_crop, features)`

  Output shape:
      3D tensor with shape `(batch, cropped_axis, features)`
  """

  def __init__(self, cropping=(1, 1), **kwargs):
    super(Cropping1D, self).__init__(**kwargs)
    self.cropping = conv_utils.normalize_tuple(cropping, 2, 'cropping')
    self.input_spec = InputSpec(ndim=3)

  def compute_output_shape(self, input_shape):
    input_shape = tensor_shape.TensorShape(input_shape).as_list()
    if input_shape[1] is not None:
      length = input_shape[1] - self.cropping[0] - self.cropping[1]
    else:
      length = None
    return tensor_shape.TensorShape([input_shape[0], length, input_shape[2]])

  def call(self, inputs):
    if self.cropping[1] == 0:
      return inputs[:, self.cropping[0]:, :]
    else:
      return inputs[:, self.cropping[0]:-self.cropping[1], :]

  def get_config(self):
    config = {'cropping': self.cropping}
    base_config = super(Cropping1D, self).get_config()
    return dict(list(base_config.items()) + list(config.items()))


@tf_export('keras.layers.Cropping2D')
class Cropping2D(Layer):
  """Cropping layer for 2D input (e.g. picture).

  It crops along spatial dimensions, i.e. width and height.

  Arguments:
      cropping: int, or tuple of 2 ints, or tuple of 2 tuples of 2 ints.
          - If int: the same symmetric cropping
              is applied to width and height.
          - If tuple of 2 ints:
              interpreted as two different
              symmetric cropping values for height and width:
              `(symmetric_height_crop, symmetric_width_crop)`.
          - If tuple of 2 tuples of 2 ints:
              interpreted as
              `((top_crop, bottom_crop), (left_crop, right_crop))`
      data_format: A string,
          one of `channels_last` (default) or `channels_first`.
          The ordering of the dimensions in the inputs.
          `channels_last` corresponds to inputs with shape
          `(batch, height, width, channels)` while `channels_first`
          corresponds to inputs with shape
          `(batch, channels, height, width)`.
          It defaults to the `image_data_format` value found in your
          Keras config file at `~/.keras/keras.json`.
          If you never set it, then it will be "channels_last".

  Input shape:
      4D tensor with shape:
      - If `data_format` is `"channels_last"`:
          `(batch, rows, cols, channels)`
      - If `data_format` is `"channels_first"`:
          `(batch, channels, rows, cols)`

  Output shape:
      4D tensor with shape:
      - If `data_format` is `"channels_last"`:
          `(batch, cropped_rows, cropped_cols, channels)`
      - If `data_format` is `"channels_first"`:
          `(batch, channels, cropped_rows, cropped_cols)`

  Examples:

  ```python
      # Crop the input 2D images or feature maps
      model = Sequential()
      model.add(Cropping2D(cropping=((2, 2), (4, 4)),
                           input_shape=(28, 28, 3)))
      # now model.output_shape == (None, 24, 20, 3)
      model.add(Conv2D(64, (3, 3), padding='same))
      model.add(Cropping2D(cropping=((2, 2), (2, 2))))
      # now model.output_shape == (None, 20, 16. 64)
  ```
  """

  def __init__(self, cropping=((0, 0), (0, 0)), data_format=None, **kwargs):
    super(Cropping2D, self).__init__(**kwargs)
    self.data_format = conv_utils.normalize_data_format(data_format)
    if isinstance(cropping, int):
      self.cropping = ((cropping, cropping), (cropping, cropping))
    elif hasattr(cropping, '__len__'):
      if len(cropping) != 2:
        raise ValueError('`cropping` should have two elements. '
                         'Found: ' + str(cropping))
      height_cropping = conv_utils.normalize_tuple(cropping[0], 2,
                                                   '1st entry of cropping')
      width_cropping = conv_utils.normalize_tuple(cropping[1], 2,
                                                  '2nd entry of cropping')
      self.cropping = (height_cropping, width_cropping)
    else:
      raise ValueError('`cropping` should be either an int, '
                       'a tuple of 2 ints '
                       '(symmetric_height_crop, symmetric_width_crop), '
                       'or a tuple of 2 tuples of 2 ints '
                       '((top_crop, bottom_crop), (left_crop, right_crop)). '
                       'Found: ' + str(cropping))
    self.input_spec = InputSpec(ndim=4)

  def compute_output_shape(self, input_shape):
    input_shape = tensor_shape.TensorShape(input_shape).as_list()
    # pylint: disable=invalid-unary-operand-type
    if self.data_format == 'channels_first':
      return tensor_shape.TensorShape([
          input_shape[0], input_shape[1],
          input_shape[2] - self.cropping[0][0] - self.cropping[0][1]
          if input_shape[2] else None,
          input_shape[3] - self.cropping[1][0] - self.cropping[1][1]
          if input_shape[3] else None
      ])
    else:
      return tensor_shape.TensorShape([
          input_shape[0],
          input_shape[1] - self.cropping[0][0] - self.cropping[0][1]
          if input_shape[1] else None,
          input_shape[2] - self.cropping[1][0] - self.cropping[1][1]
          if input_shape[2] else None, input_shape[3]
      ])
    # pylint: enable=invalid-unary-operand-type

  def call(self, inputs):
    # pylint: disable=invalid-unary-operand-type
    if self.data_format == 'channels_first':
      if self.cropping[0][1] == self.cropping[1][1] == 0:
        return inputs[:, :, self.cropping[0][0]:, self.cropping[1][0]:]
      elif self.cropping[0][1] == 0:
        return inputs[:, :, self.cropping[0][0]:, self.cropping[1][0]:
                      -self.cropping[1][1]]
      elif self.cropping[1][1] == 0:
        return inputs[:, :, self.cropping[0][0]:-self.cropping[0][1],
                      self.cropping[1][0]:]
      return inputs[:, :, self.cropping[0][0]:-self.cropping[0][1],
                    self.cropping[1][0]:-self.cropping[1][1]]
    else:
      if self.cropping[0][1] == self.cropping[1][1] == 0:
        return inputs[:, self.cropping[0][0]:, self.cropping[1][0]:, :]
      elif self.cropping[0][1] == 0:
        return inputs[:, self.cropping[0][0]:, self.cropping[1][0]:
                      -self.cropping[1][1], :]
      elif self.cropping[1][1] == 0:
        return inputs[:, self.cropping[0][0]:-self.cropping[0][1],
                      self.cropping[1][0]:, :]
      return inputs[:, self.cropping[0][0]:-self.cropping[0][1], self.cropping[
          1][0]:-self.cropping[1][1], :]  # pylint: disable=invalid-unary-operand-type
    # pylint: enable=invalid-unary-operand-type

  def get_config(self):
    config = {'cropping': self.cropping, 'data_format': self.data_format}
    base_config = super(Cropping2D, self).get_config()
    return dict(list(base_config.items()) + list(config.items()))


@tf_export('keras.layers.Cropping3D')
class Cropping3D(Layer):
  """Cropping layer for 3D data (e.g.

  spatial or spatio-temporal).

  Arguments:
      cropping: int, or tuple of 23ints, or tuple of 3 tuples of 2 ints.
          - If int: the same symmetric cropping
              is applied to depth, height, and width.
          - If tuple of 3 ints:
              interpreted as two different
              symmetric cropping values for depth, height, and width:
              `(symmetric_dim1_crop, symmetric_dim2_crop, symmetric_dim3_crop)`.
          - If tuple of 3 tuples of 2 ints:
              interpreted as
              `((left_dim1_crop, right_dim1_crop), (left_dim2_crop,
                right_dim2_crop), (left_dim3_crop, right_dim3_crop))`
      data_format: A string,
          one of `channels_last` (default) or `channels_first`.
          The ordering of the dimensions in the inputs.
          `channels_last` corresponds to inputs with shape
          `(batch, spatial_dim1, spatial_dim2, spatial_dim3, channels)`
          while `channels_first` corresponds to inputs with shape
          `(batch, channels, spatial_dim1, spatial_dim2, spatial_dim3)`.
          It defaults to the `image_data_format` value found in your
          Keras config file at `~/.keras/keras.json`.
          If you never set it, then it will be "channels_last".

  Input shape:
      5D tensor with shape:
      - If `data_format` is `"channels_last"`:
          `(batch, first_axis_to_crop, second_axis_to_crop, third_axis_to_crop,
            depth)`
      - If `data_format` is `"channels_first"`:
          `(batch, depth, first_axis_to_crop, second_axis_to_crop,
            third_axis_to_crop)`

  Output shape:
      5D tensor with shape:
      - If `data_format` is `"channels_last"`:
          `(batch, first_cropped_axis, second_cropped_axis, third_cropped_axis,
            depth)`
      - If `data_format` is `"channels_first"`:
          `(batch, depth, first_cropped_axis, second_cropped_axis,
            third_cropped_axis)`
  """

  def __init__(self,
               cropping=((1, 1), (1, 1), (1, 1)),
               data_format=None,
               **kwargs):
    super(Cropping3D, self).__init__(**kwargs)
    self.data_format = conv_utils.normalize_data_format(data_format)
    if isinstance(cropping, int):
      self.cropping = ((cropping, cropping), (cropping, cropping), (cropping,
                                                                    cropping))
    elif hasattr(cropping, '__len__'):
      if len(cropping) != 3:
        raise ValueError('`cropping` should have 3 elements. '
                         'Found: ' + str(cropping))
      dim1_cropping = conv_utils.normalize_tuple(cropping[0], 2,
                                                 '1st entry of cropping')
      dim2_cropping = conv_utils.normalize_tuple(cropping[1], 2,
                                                 '2nd entry of cropping')
      dim3_cropping = conv_utils.normalize_tuple(cropping[2], 2,
                                                 '3rd entry of cropping')
      self.cropping = (dim1_cropping, dim2_cropping, dim3_cropping)
    else:
      raise ValueError(
          '`cropping` should be either an int, '
          'a tuple of 3 ints '
          '(symmetric_dim1_crop, symmetric_dim2_crop, symmetric_dim3_crop), '
          'or a tuple of 3 tuples of 2 ints '
          '((left_dim1_crop, right_dim1_crop),'
          ' (left_dim2_crop, right_dim2_crop),'
          ' (left_dim3_crop, right_dim2_crop)). '
          'Found: ' + str(cropping))
    self.input_spec = InputSpec(ndim=5)

  def compute_output_shape(self, input_shape):
    input_shape = tensor_shape.TensorShape(input_shape).as_list()
    # pylint: disable=invalid-unary-operand-type
    if self.data_format == 'channels_first':
      if input_shape[2] is not None:
        dim1 = input_shape[2] - self.cropping[0][0] - self.cropping[0][1]
      else:
        dim1 = None
      if input_shape[3] is not None:
        dim2 = input_shape[3] - self.cropping[1][0] - self.cropping[1][1]
      else:
        dim2 = None
      if input_shape[4] is not None:
        dim3 = input_shape[4] - self.cropping[2][0] - self.cropping[2][1]
      else:
        dim3 = None
      return tensor_shape.TensorShape(
          [input_shape[0], input_shape[1], dim1, dim2, dim3])
    elif self.data_format == 'channels_last':
      if input_shape[1] is not None:
        dim1 = input_shape[1] - self.cropping[0][0] - self.cropping[0][1]
      else:
        dim1 = None
      if input_shape[2] is not None:
        dim2 = input_shape[2] - self.cropping[1][0] - self.cropping[1][1]
      else:
        dim2 = None
      if input_shape[3] is not None:
        dim3 = input_shape[3] - self.cropping[2][0] - self.cropping[2][1]
      else:
        dim3 = None
      return tensor_shape.TensorShape(
          [input_shape[0], dim1, dim2, dim3, input_shape[4]])
    # pylint: enable=invalid-unary-operand-type

  def call(self, inputs):
    # pylint: disable=invalid-unary-operand-type
    if self.data_format == 'channels_first':
      if self.cropping[0][1] == self.cropping[1][1] == self.cropping[2][1] == 0:
        return inputs[:, :, self.cropping[0][0]:, self.cropping[1][0]:,
                      self.cropping[2][0]:]
      elif self.cropping[0][1] == self.cropping[1][1] == 0:
        return inputs[:, :, self.cropping[0][0]:, self.cropping[1][0]:,
                      self.cropping[2][0]:-self.cropping[2][1]]
      elif self.cropping[1][1] == self.cropping[2][1] == 0:
        return inputs[:, :, self.cropping[0][0]:-self.cropping[0][1],
                      self.cropping[1][0]:, self.cropping[2][0]:]
      elif self.cropping[0][1] == self.cropping[2][1] == 0:
        return inputs[:, :, self.cropping[0][0]:, self.cropping[1][0]:
                      -self.cropping[1][1], self.cropping[2][0]:]
      elif self.cropping[0][1] == 0:
        return inputs[:, :, self.cropping[0][0]:, self.cropping[1][
            0]:-self.cropping[1][1], self.cropping[2][0]:-self.cropping[2][1]]
      elif self.cropping[1][1] == 0:
        return inputs[:, :, self.cropping[0][0]:-self.cropping[0][1], self.
                      cropping[1][0]:, self.cropping[2][0]:-self.cropping[2][1]]
      elif self.cropping[2][1] == 0:
        return inputs[:, :, self.cropping[0][0]:-self.cropping[0][1], self.
                      cropping[1][0]:-self.cropping[1][1], self.cropping[2][0]:]
      return inputs[:, :, self.cropping[0][0]:-self.cropping[0][1],
                    self.cropping[1][0]:-self.cropping[1][1], self.cropping[2][
                        0]:-self.cropping[2][1]]
    else:
      if self.cropping[0][1] == self.cropping[1][1] == self.cropping[2][1] == 0:
        return inputs[:, self.cropping[0][0]:, self.cropping[1][0]:,
                      self.cropping[2][0]:, :]
      elif self.cropping[0][1] == self.cropping[1][1] == 0:
        return inputs[:, self.cropping[0][0]:, self.cropping[1][0]:,
                      self.cropping[2][0]:-self.cropping[2][1], :]
      elif self.cropping[1][1] == self.cropping[2][1] == 0:
        return inputs[:, self.cropping[0][0]:-self.cropping[0][1],
                      self.cropping[1][0]:, self.cropping[2][0]:, :]
      elif self.cropping[0][1] == self.cropping[2][1] == 0:
        return inputs[:, self.cropping[0][0]:, self.cropping[1][0]:
                      -self.cropping[1][1], self.cropping[2][0]:, :]
      elif self.cropping[0][1] == 0:
        return inputs[:, self.cropping[0][0]:, self.cropping[1][
            0]:-self.cropping[1][1], self.cropping[2][0]:
                      -self.cropping[2][1], :]
      elif self.cropping[1][1] == 0:
        return inputs[:, self.cropping[0][
            0]:-self.cropping[0][1], self.cropping[1][0]:, self.cropping[2][0]:
                      -self.cropping[2][1], :]
      elif self.cropping[2][1] == 0:
        return inputs[:, self.cropping[0][0]:-self.cropping[0][1],
                      self.cropping[1][0]:-self.cropping[1][1], self.cropping[
                          2][0]:, :]
      return inputs[:, self.cropping[0][0]:-self.cropping[0][1], self.cropping[
          1][0]:-self.cropping[1][1], self.cropping[2][0]:  # pylint: disable=invalid-unary-operand-type
                    -self.cropping[2][1], :]  # pylint: disable=invalid-unary-operand-type
    # pylint: enable=invalid-unary-operand-type

  def get_config(self):
    config = {'cropping': self.cropping, 'data_format': self.data_format}
    base_config = super(Cropping3D, self).get_config()
    return dict(list(base_config.items()) + list(config.items()))


# Aliases

Convolution1D = Conv1D
Convolution2D = Conv2D
Convolution3D = Conv3D
SeparableConvolution1D = SeparableConv1D
SeparableConvolution2D = SeparableConv2D
Convolution2DTranspose = Conv2DTranspose
Convolution3DTranspose = Conv3DTranspose
Deconvolution2D = Deconv2D = Conv2DTranspose
Deconvolution3D = Deconv3D = Conv3DTranspose
